Literature DB >> 33571210

Tracking individual honeybees among wildflower clusters with computer vision-facilitated pollinator monitoring.

Malika Nisal Ratnayake1, Adrian G Dyer2,3, Alan Dorin1.   

Abstract

Monitoring animals in their natural habitat is essential for advancement of animal behavioural studies, especially in pollination studies. Non-invasive techniques are preferred for these purposes as they reduce opportunities for research apparatus to interfere with behaviour. One potentially valuable approach is image-based tracking. However, the complexity of tracking unmarked wild animals using video is challenging in uncontrolled outdoor environments. Out-of-the-box algorithms currently present several problems in this context that can compromise accuracy, especially in cases of occlusion in a 3D environment. To address the issue, we present a novel hybrid detection and tracking algorithm to monitor unmarked insects outdoors. Our software can detect an insect, identify when a tracked insect becomes occluded from view and when it re-emerges, determine when an insect exits the camera field of view, and our software assembles a series of insect locations into a coherent trajectory. The insect detecting component of the software uses background subtraction and deep learning-based detection together to accurately and efficiently locate the insect among a cluster of wildflowers. We applied our method to track honeybees foraging outdoors using a new dataset that includes complex background detail, wind-blown foliage, and insects moving into and out of occlusion beneath leaves and among three-dimensional plant structures. We evaluated our software against human observations and previous techniques. It tracked honeybees at a rate of 86.6% on our dataset, 43% higher than the computationally more expensive, standalone deep learning model YOLOv2. We illustrate the value of our approach to quantify fine-scale foraging of honeybees. The ability to track unmarked insect pollinators in this way will help researchers better understand pollination ecology. The increased efficiency of our hybrid approach paves the way for the application of deep learning-based techniques to animal tracking in real-time using low-powered devices suitable for continuous monitoring.

Entities:  

Year:  2021        PMID: 33571210      PMCID: PMC7877608          DOI: 10.1371/journal.pone.0239504

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


  24 in total

1.  Dynamics of attention in depth: evidence from multi-element tracking.

Authors:  Lavanya Viswanathan; Ennio Mingolla
Journal:  Perception       Date:  2002       Impact factor: 1.490

2.  Dimensionality of consumer search space drives trophic interaction strengths.

Authors:  Samraat Pawar; Anthony I Dell; Van M Savage
Journal:  Nature       Date:  2012-06-28       Impact factor: 49.962

3.  Flight patterns of foraging bees relative to density of artificial flowers and distribution of nectar.

Authors:  Keith D Waddington
Journal:  Oecologia       Date:  1980-01       Impact factor: 3.225

Review 4.  Automated image-based tracking and its application in ecology.

Authors:  Anthony I Dell; John A Bender; Kristin Branson; Iain D Couzin; Gonzalo G de Polavieja; Lucas P J J Noldus; Alfonso Pérez-Escudero; Pietro Perona; Andrew D Straw; Martin Wikelski; Ulrich Brose
Journal:  Trends Ecol Evol       Date:  2014-06-05       Impact factor: 17.712

Review 5.  A computer vision for animal ecology.

Authors:  Ben G Weinstein
Journal:  J Anim Ecol       Date:  2017-11-29       Impact factor: 5.091

6.  Optimal foraging: movement patterns of bumblebees between inflorescences.

Authors:  G H Pyke
Journal:  Theor Popul Biol       Date:  1978-02       Impact factor: 1.570

7.  Foraging responses of bumble bees to rewardless floral patches: importance of within-plant variance in nectar presentation.

Authors:  Shoko Nakamura; Gaku Kudo
Journal:  AoB Plants       Date:  2016-07-11       Impact factor: 3.276

8.  Harmonic radar tracking reveals random dispersal pattern of bumblebee (Bombus terrestris) queens after hibernation.

Authors:  James C Makinson; Joseph L Woodgate; Andy Reynolds; Elizabeth A Capaldi; Clint J Perry; Lars Chittka
Journal:  Sci Rep       Date:  2019-03-20       Impact factor: 4.379

9.  Tracking All Members of a Honey Bee Colony Over Their Lifetime Using Learned Models of Correspondence.

Authors:  Franziska Boenisch; Benjamin Rosemann; Benjamin Wild; David Dormagen; Fernando Wario; Tim Landgraf
Journal:  Front Robot AI       Date:  2018-04-04

10.  ToxId: an efficient algorithm to solve occlusions when tracking multiple animals.

Authors:  Alvaro Rodriguez; Hanqing Zhang; Jonatan Klaminder; Tomas Brodin; Magnus Andersson
Journal:  Sci Rep       Date:  2017-11-07       Impact factor: 4.379

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  3 in total

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Authors:  Qaim Naqvi; Patrick J Wolff; Brenda Molano-Flores; Jinelle H Sperry
Journal:  Ecol Evol       Date:  2022-06-02       Impact factor: 3.167

2.  Visual Diagnosis of the Varroa Destructor Parasitic Mite in Honeybees Using Object Detector Techniques.

Authors:  Simon Bilik; Lukas Kratochvila; Adam Ligocki; Ondrej Bostik; Tomas Zemcik; Matous Hybl; Karel Horak; Ludek Zalud
Journal:  Sensors (Basel)       Date:  2021-04-14       Impact factor: 3.576

3.  Caught on camera: Field imagery reveals the unexpected importance of vertebrates for biological control of the banana weevil (Cosmopolites sordidus Col. Curculionidae).

Authors:  Paul Tresson; Philippe Tixier; William Puech; Bernard Abufera; Antoine Wyvekens; Dominique Carval
Journal:  PLoS One       Date:  2022-09-20       Impact factor: 3.752

  3 in total

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